Causally Inspired Regularization Enables Domain General Representations

Abstract

Given a causal graph representing the data-generating process shared across different domains/distributions, enforcing sufficient graph-implied conditional independencies can identify domain-general (non-spurious) feature representations. For the standard input-output predictive setting, we categorize the set of graphs considered in the literature into two distinct groups: (i) those in which the empirical risk minimizer across training domains gives domain-general representations and (ii) those where it does not. For the latter case (ii), we propose a novel framework with regularizations, which we demonstrate are sufficient for identifying domain-general feature representations without a priori knowledge (or proxies) of the spurious features. Empirically, our proposed method is effective for both (semi) synthetic and real-world data, outperforming other state-of-the-art methods in average and worst-domain transfer accuracy.

Cite

Text

Salaudeen and Koyejo. "Causally Inspired Regularization Enables Domain General Representations." Artificial Intelligence and Statistics, 2024.

Markdown

[Salaudeen and Koyejo. "Causally Inspired Regularization Enables Domain General Representations." Artificial Intelligence and Statistics, 2024.](https://mlanthology.org/aistats/2024/salaudeen2024aistats-causally/)

BibTeX

@inproceedings{salaudeen2024aistats-causally,
  title     = {{Causally Inspired Regularization Enables Domain General Representations}},
  author    = {Salaudeen, Olawale and Koyejo, Sanmi},
  booktitle = {Artificial Intelligence and Statistics},
  year      = {2024},
  pages     = {3124-3132},
  volume    = {238},
  url       = {https://mlanthology.org/aistats/2024/salaudeen2024aistats-causally/}
}